Data Analyst

Chislehurst
2 months ago
Applications closed

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Data Analyst

Data Analyst

Data Analyst

Data Analyst

Data Analyst

Data Analyst

JRRL are seeking a Data Analyst for a local financial services employee-owned company. Offering full training, this is an office-based role with great benefits, employee ownership profit sharing, free parking and progression. You will be consulting with 10-20 corporate companies with a diverse range of complexity and manage the development, production and delivery of data sets providing specific services to financial organisations.

Main duties for the Data Analyst:

Ensure high levels of personal professionalism and responsibility with a total regard for data security, gained from privileged access and insight into ‘market sensitive’ client data
Establish strong and effective relationships with clients and to maintain excellent service delivery by gathering, collating and analysing data
Design, specify, build, communicate, develop and propose excel data sets in collaboration with colleagues and clients
Build an understanding of the market landscape including competitor information, customer/market data, technological developments, regulatory changes and political pressures
Utilise market knowledge and identify opportunities for reporting enhancements
Provide insightful analysis of current trends and unusual performance patterns that emerge from numerical reports, for the benefit of clients and to support the directors and principal consultants at meetings
Skills and experience for the Data Analyst:

Strong numeracy and analytical skills.  A proven ability to understand data and the complex patterns emerging from its manipulation
Excellent communication skills with the ability to influence and resonate with clients
The proficiency to structure and write comprehensive technical reports
Demonstrable change management skills.  The ability to identify and process improvements, show drive, determination, resilience and a positive attitude
Advanced level of Microsoft Excel knowledge with the capability and capacity to work with large data sets, statistical functions and macros (training given on macros)
Determined and resilient with a positive attitude
Strong and enthusiastic team player
Benefits:

Annual discretionary bonus scheme up to 5% of basic salary
26 days’ holiday + Bank Holidays. Basic holiday allowance increases with length of service to a maximum of 33 days after 10 years. Option to buy up to an additional 10 days as part of holiday buy/sell scheme
BUPA
Income protection
Critical illness cover (6 months’ salary for 5 years)
Matching pension payments
Death in service
Good career prospects
Flexible working hours
This full time, permanent, office based role is a fantastic opportunity in a local company that offer excellent training and a good career path. This is an office based role therefore you will need to be able to commute to Chislehurst.  Free car parking provided

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